- recipe cerberus-x
Versatile Functional Ontology Assignments via Hidden Markov Model (HMM) searching with environmental focus of shotgun 'omics data.
- Homepage:
- Documentation:
- License:
BSD / BSD-3-Clause
- Recipe:
- package cerberus-x¶
- versions:
1.5.0-0
- depends configargparse:
- depends dominate:
- depends flash2:
- depends hydrampp:
- depends importlib-resources:
- depends metaomestats:
- depends pandas:
- depends plotly:
- depends psutil:
- depends pyhmmer:
- depends pyrodigal:
- depends pyrodigal-gv:
- depends python:
>=3.8
- depends python-kaleido:
- depends scikit-learn:
- depends setuptools:
<70.0.0
- requirements:
- additional platforms:
Installation
You need a conda-compatible package manager (currently either micromamba, mamba, or conda) and the Bioconda channel already activated (see set-up-channels).
While any of above package managers is fine, it is currently recommended to use either micromamba or mamba (see here for installation instructions). We will show all commands using mamba below, but the arguments are the same for the two others.
Given that you already have a conda environment in which you want to have this package, install with:
mamba install cerberus-x and update with:: mamba update cerberus-x
To create a new environment, run:
mamba create --name myenvname cerberus-x
with
myenvname
being a reasonable name for the environment (see e.g. the mamba docs for details and further options).Alternatively, use the docker container:
docker pull quay.io/biocontainers/cerberus-x:<tag> (see `cerberus-x/tags`_ for valid values for ``<tag>``)
Download stats¶
Link to this page¶
Render an badge with the following MarkDown:
[](http://bioconda.github.io/recipes/cerberus-x/README.html)